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Text augmented automatic statistician for predicting approval rates of politicians

机译:文本增强型自动统计员,用于预测政客的批准率

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摘要

Predicting an approval rate of politicians is a popular task. While a type of prediction is using a text mining from news articles, we introduce a text augmented Gaussian process to perform the prediction with contexts. We test our model with 2017 South Korea Presidential Election in 1) a quantitative evaluation, and 2) a qualitative analysis. The performance of the model with text input is better than the performance of the model without the text input, which has been a typical approach of applying the Gaussian process. Moreover, the model can capture keywords which provide behind rational of the prediction result, which was not provided with only temporal information.
机译:预测政客的支持率是一项很普遍的任务。虽然一种类型的预测使用的是从新闻报道中提取的文本,但我们引入了文本增强的高斯过程来根据上下文执行预测。我们在1)定量评估和2)定性分析中通过2017年韩国总统大选测试了我们的模型。带文本输入的模型的性能要优于不带文本输入的模型的性能,这是应用高斯过程的一种典型方法。此外,该模型可以捕获关键字,这些关键字提供了预测结果的合理性,而不仅仅是时间信息。

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